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Pranav Mamidanna

Showing results (1-10 of 7) with videos related to

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Journal of Neural Engineering|September 3, 2021
The impact of objective functions on control policies in closed-loop control of grasping force with a myoelectric prosthesisPranav Mamidanna, Jakob Lund Dideriksen, Strahinja Dosen
Journal of Neural Engineering|August 17, 2022
Estimating speed-accuracy trade-offs to evaluate and understand closed-loop prosthesis interfacesPranav Mamidanna, Jakob L Dideriksen, Strahinja Dosen
Journal of Neural Engineering|February 28, 2024
Measuring and monitoring skill learning in closed-loop myoelectric hand prostheses using speed-accuracy tradeoffsPranav Mamidanna, Shima Gholinezhad, Dario Farina, et al.
Elife|May 31, 2023
Contrasting action and posture coding with hierarchical deep neural network models of proprioceptionKai J Sandbrink, Pranav Mamidanna, Claudio Michaelis, et al.
IEEE Transactions on Haptics|March 4, 2025
Closed-Loop Manual Control With Tactile or Visual Feedback Under Wireless Link ImpairmentsSuraj Suman, Pranav Mamidanna, Jimmy Jessen Nielsen, et al.
Nature Neuroscience|August 22, 2018
DeepLabCut: markerless pose estimation of user-defined body parts with deep learningAlexander Mathis, Pranav Mamidanna, Kevin M Cury, et al.
Scientific Reports|March 30, 2020
Action representation in the mouse parieto-frontal networkTuce Tombaz, Benjamin A Dunn, Karoline Hovde, et al.
Pageof 1

Showing results (1-10 of 7) with videos related to

Sort By:
Pageof 1
Journal of Neural Engineering|September 3, 2021
The impact of objective functions on control policies in closed-loop control of grasping force with a myoelectric prosthesisPranav Mamidanna, Jakob Lund Dideriksen, Strahinja Dosen
Journal of Neural Engineering|August 17, 2022
Estimating speed-accuracy trade-offs to evaluate and understand closed-loop prosthesis interfacesPranav Mamidanna, Jakob L Dideriksen, Strahinja Dosen
Journal of Neural Engineering|February 28, 2024
Measuring and monitoring skill learning in closed-loop myoelectric hand prostheses using speed-accuracy tradeoffsPranav Mamidanna, Shima Gholinezhad, Dario Farina, et al.
Elife|May 31, 2023
Contrasting action and posture coding with hierarchical deep neural network models of proprioceptionKai J Sandbrink, Pranav Mamidanna, Claudio Michaelis, et al.
IEEE Transactions on Haptics|March 4, 2025
Closed-Loop Manual Control With Tactile or Visual Feedback Under Wireless Link ImpairmentsSuraj Suman, Pranav Mamidanna, Jimmy Jessen Nielsen, et al.
Nature Neuroscience|August 22, 2018
DeepLabCut: markerless pose estimation of user-defined body parts with deep learningAlexander Mathis, Pranav Mamidanna, Kevin M Cury, et al.
Scientific Reports|March 30, 2020
Action representation in the mouse parieto-frontal networkTuce Tombaz, Benjamin A Dunn, Karoline Hovde, et al.
Pageof 1